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- Title
Research on Traffic Flow Prediction based on Chaotic Time Series.
- Authors
Xiaobo Yang; Lianggui Liu
- Abstract
In order to dramatically improve the precision of traffic flow estimates, this study proposes a prediction technique based on chaotic time series. Here is a breakdown of the exact research process. First, the chaos principle of traffic flow and two indexes--delay time and dimension selection--that affect system reconstruction are looked at. Then, in order to obtain the maximum amount of time that can be forecasted, the chaotic traffic flow is predicted using an improved local approach and the Lyapunov index. Finally, a comparison is made between the traffic flow predictions made using the traditional local technique and the modified local method. According to the outcomes of the predictions, chaotic time series can be utilized to forecast traffic flow, and the prediction error is lower than that of both the widely used neural network prediction method and the least squares support vector machine prediction method, proving the effectiveness of the method proposed in this study.
- Subjects
TRAFFIC flow; TIME series analysis; LEAST squares; TRAFFIC estimation; SUPPORT vector machines; CHAOS synchronization
- Publication
IAENG International Journal of Applied Mathematics, 2023, Vol 53, Issue 3, p1007
- ISSN
1992-9978
- Publication type
Article